Machine learning for structure-guided materials and process design

被引:2
作者
Morand, Lukas [1 ]
Iraki, Tarek [2 ,3 ]
Dornheim, Johannes [3 ,4 ]
Sandfeld, Stefan [2 ]
Link, Norbert [3 ]
Helm, Dirk [1 ]
机构
[1] Fraunhofer Inst Mech Mat IWM, Freiburg, Germany
[2] Forschungszentrum Julich, Inst Adv Simulat Mat Data Sci & Informat IAS 9, D-52425 Julich, Germany
[3] Univ Appl Sci, Intelligent Syst Res Grp ISRG, Karlsruhe, Germany
[4] Karlsruhe Inst Technol, Inst Appl Mat Computat Mat Sci IAM CMS, Karlsruhe, Germany
关键词
TEXTURE; OPTIMIZATION;
D O I
10.1016/j.matdes.2024.113453
中图分类号
T [工业技术];
学科分类号
08 ;
摘要
In recent years, there has been a growing interest in accelerated materials innovation in the context of the process-structure-property chain. In this regard, it is essential to take into account manufacturing processes and tailor materials design approaches to support downstream process design approaches. As a major step into this direction, we present a holistic and generic optimization approach that covers the entire process-structure- property chain in materials engineering. Our approach specifically employs machine learning to address two critical identification problems: a materials design problem, which involves identifying near-optimal material microstructures that exhibit desired properties, and a process design problem that is to find an optimal processing path to manufacture these microstructures. Both identification problems are typically ill-posed, which presents a significant challenge for solution approaches. However, the non-unique nature of these problems offers an important advantage for processing: By having several target microstructures that perform similarly well, processes can be efficiently guided towards manufacturing the best reachable microstructure. The functionality of the approach is demonstrated at manufacturing crystallographic textures with desired properties in a simulated metal forming process.
引用
收藏
页数:11
相关论文
共 67 条
[1]   Reduced-Order Modeling Approach for Materials Design with a Sequence of Processes [J].
Acar, Pinar ;
Sundararaghavan, Veera .
AIAA JOURNAL, 2018, 56 (12) :5041-5044
[2]   Linear Solution Scheme for Microstructure Design with Process Constraints [J].
Acar, Pinar ;
Sundararaghavan, Veera .
AIAA JOURNAL, 2016, 54 (12) :4022-4031
[3]  
Adams B.L., 2012, Microstructure Sensitive Design for Performance Optimization
[4]  
Advanced Materials Initiative 2030, 2022, Tech. Rep.
[5]   Perspective: Materials informatics and big data: Realization of the "fourth paradigm" of science in materials science [J].
Agrawal, Ankit ;
Choudhary, Alok .
APL MATERIALS, 2016, 4 (05)
[6]   An active learning high-throughput microstructure calibration framework for solving inverse structure-process problems in materials informatics [J].
Anh Tran ;
Mitchell, John A. ;
Swiler, Laura P. ;
Wildey, Tim .
ACTA MATERIALIA, 2020, 194 :80-92
[7]   Adaptive Strategies for Materials Design using Uncertainties [J].
Balachandran, Prasanna V. ;
Xue, Dezhen ;
Theiler, James ;
Hogden, John ;
Lookman, Turab .
SCIENTIFIC REPORTS, 2016, 6
[8]  
Bauckhage C., 2021, Tech. Rep.
[9]  
Bergstra J, 2012, J MACH LEARN RES, V13, P281
[10]  
Bompas S, 2024, Arxiv, DOI arXiv:2311.11343